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Multifidelity Statistical Analysis of Large Eddy Simulations in Scramjet Computations

机译:争拉计算中大涡模拟的多倍性统计分析

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The development of scramjet engines is an important research area for advancing hypersonic and orbital flights. Progress towards optimal engine designs requires accurate and computationally affordable flow simulations, as well as uncertainty quantification (UQ). While traditional UQ techniques can become prohibitive under expensive simulations and high-dimensional parameter spaces, polynomial chaos (PC) surrogate modeling is a useful tool for alleviating some of the computational burden. However, non-intrusive quadrature-based constructions of PC expansions relying on a single high-fidelity model can still be quite expensive. We thus introduce a two-stage numerical procedure for constructing PC surrogates while making use of multiple models of different fidelity. The first stage involves an initial dimension reduction through global sensitivity analysis using compressive sensing. The second stage utilizes adaptive sparse quadrature on a multifidelity expansion to compute PC surrogate coefficients in the reduced parameter space where quadrature methods can be more effective. The overall method is used to produce accurate surrogates and to propagate uncertainty induced by uncertain boundary conditions and turbulence model parameters, for performance quantities of interest from large eddy simulations of supersonic reactive flows inside a scramjet engine.
机译:Scramjet发动机的发展是推进超音速和轨道飞行的重要研究领域。最佳发动机设计的进展需要准确和计算地经济实惠的流量模拟,以及不确定量化(UQ)。虽然传统的UQ技术可以在昂贵的模拟和高维参数空间下变得越来越高,但多项式混沌(PC)代理建模是一种有用的工具,用于减轻一些计算负担。然而,依赖于单个高保真模型的基于非侵入式正交的PC扩展结构仍然是非常昂贵的。因此,我们引入了一种用于构建PC代理的两级数值程序,同时利用多种不同的保真度。第一阶段涉及通过使用压缩感测的全局敏感性分析来降低初始尺寸降低。第二阶段利用在多尺寸扩展上的自适应稀疏正交,以计算降低参数空间中的PC代理系数,其中正交方法可以更有效。整体方法用于生产精确的替代物并传播不确定的边界条件和湍流模型参数诱导的不确定性,以便在Scramjet发动机内超声波反应流量的大涡流模拟的性能。

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